Quantum Search With Generalized Wildcards
Arjan Cornelissen, Nikhil S. Mande, Subhasree Patro, Nithish Raja, Swagato Sanyal

TL;DR
This paper extends quantum search algorithms with wildcards to more general subset queries, providing near-tight bounds and a novel framework that characterizes quantum query complexity through an optimization program.
Contribution
It introduces a new framework for analyzing quantum search with generalized wildcard queries, deriving near-tight bounds for various subset collections, and employs the negative-weight adversary bound in a novel way.
Findings
Derived near-tight bounds for various subset collections
Developed a framework linking quantum query complexity to an optimization program
First use of primal negative-weight adversary bound for upper bounds without SDP duality
Abstract
In the search with wildcards problem [Ambainis, Montanaro, Quantum Inf.~Comput.'14], one's goal is to learn an unknown bit-string . An algorithm may, at unit cost, test equality of any subset of the hidden string with a string of its choice. Ambainis and Montanaro showed a quantum algorithm of cost and a near-matching lower bound of . Belovs [Comput.~Comp.'15] subsequently showed a tight upper bound. We consider a natural generalization of this problem, parametrized by a subset , where an algorithm may test whether for an arbitrary and of its choice, at unit cost. We show near-tight bounds when is any of the following collections: bounded-size sets, contiguous blocks, prefixes, and only the full set. All of these results are derived…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Complexity and Algorithms in Graphs · Machine Learning and Algorithms
